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Copula selection for graphical models in continuous Estimation of Distribution Algorithms

机译:连续估计分布算法中图形模型的Copula选择

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This paper presents the use of graphical models and copula functions in Estimation of Distribution Algorithms (EDAs) for solving multivariate optimization problems. It is shown in this work how the incorporation of copula functions and graphical models for modeling the dependencies among variables provides some theoretical advantages over traditional EDAs. Bymeans of copula functions and two well known graphical models, this paper presents a novel approach for defining new EDAs. Either dependence is modeled by a copula function chosen from a predefined set of six functions that aim to cover a wide range of inter-relations. It is also shown how the use of mutual information in the learning of graphical models implies a natural way of employing copula entropies. The experimental results on separable and non-separable functions show that the two new EDAs, which adopt copula functions to model dependencies, perform better than their original version with Gaussian variables.
机译:本文介绍了在分配算法估计(EDA)中使用图形模型和copula函数解决多元优化问题的方法。在这项工作中表明,如何将copula函数和用于对变量之间的依赖性进行建模的图形模型的合并提供了优于传统EDA的一些理论优势。通过copula函数和两个众所周知的图形模型,本文提出了一种定义新EDA的新颖方法。依赖关系是通过从六个功能的预定义集合中选择的copula函数建模的,这些函数旨在覆盖广泛的相互关系。还显示了在图形模型的学习中互信息的使用如何暗含使用copula熵的自然方式。对可分离函数和不可分离函数的实验结果表明,这两个新的EDA采用copula函数对依赖关系进行建模,其性能比原始版本具有高斯变量的要好。

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